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Cellular non-linear networks for microcirculation applications

机译:用于微循环应用的蜂窝非线性网络

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Cellular nonlinear network methodology and related technology was used for the implementation of a realtime image processing system for the study of structural and functional parameters in the microcirculation. The observation of these parameters is basic in the description and characterization of the physiological phenomena occurring in the peripheral vascular network at a micrometric scale. They contribute to the understanding of the global cardiovascular regulatory system for both experimental and clinical applications. The aim of this new CNN-based approach is to implement a real-time system that is based on automated image processing algorithms that overcome the limits of the conventional invasive, manual, and operator dependant methods. It would also allow an objective protocol in the in vivo experiments. These conditions are necessary in biological studies in order to make the experimental results reproducible and comparable. An algorithm was implemented, by exploiting the CNN structure potentiality, in order to characterize the morphology of the capillary maps, to determine the red blood cells density in blood (Hematocrit), and to calculate red blood cells velocity (RBCV) in capillaries from image sequences captured during in vivo experiments by intravital microscopy. The algorithm was designed and tested using a CNN simulator and then optimized and implemented via hardware on the ACE16k CNN chip. The final results of the image processing were furthermore compared with measurements obtained with conventional, manual methods used in microvascular studies.
机译:细胞非线性网络方法学和相关技术被用于实现实时图像处理系统,以研究微循环中的结构和功能参数。这些参数的观察是描述和表征在微观尺度下在周围血管网络中发生的生理现象的基础。它们有助于理解用于实验和临床应用的全球心血管调节系统。这种基于CNN的新方法的目的是实现一种基于自动图像处理算法的实时系统,该算法克服了传统的侵入性,手动和操作员依赖性方法的局限性。它也将允许在体内实验中的客观方案。这些条件在生物学研究中是必不可少的,以使实验结果可再现和可比。通过利用CNN结构潜力来实现算法,以表征毛细管图的形态,确定血液中的红细胞密度(血细胞比容),并根据图像计算毛细血管中的红细胞速度(RBCV)通过活体内显微镜在体内实验中捕获的序列。该算法是使用CNN模拟器设计和测试的,然后通过ACE16k CNN芯片上的硬件进行优化和实现。此外,将图像处理的最终结果与通过微血管研究中使用的常规手动方法获得的测量结果进行了比较。

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